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NeuralKG-ind: A Python Library for Inductive Knowledge Graph Representation Learning

Authors :
Zhang, Wen
Yao, Zhen
Chen, Mingyang
Huang, Zhiwei
Chen, Huajun
Publication Year :
2023

Abstract

Since the dynamic characteristics of knowledge graphs, many inductive knowledge graph representation learning (KGRL) works have been proposed in recent years, focusing on enabling prediction over new entities. NeuralKG-ind is the first library of inductive KGRL as an important update of NeuralKG library. It includes standardized processes, rich existing methods, decoupled modules, and comprehensive evaluation metrics. With NeuralKG-ind, it is easy for researchers and engineers to reproduce, redevelop, and compare inductive KGRL methods. The library, experimental methodologies, and model re-implementing results of NeuralKG-ind are all publicly released at https://github.com/zjukg/NeuralKG/tree/ind .<br />Comment: Accepted by SIGIR2023 Demonstration Track

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.14678
Document Type :
Working Paper